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Towards 10000TOPS/W DNN Inference with Analog in-Memory Computing – A Circuit Blueprint, Device Options and Requirements

机译:利用模拟内存计算实现10000TOPS / W DNN推理–电路蓝图,设备选项和要求

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This paper presents a blueprint for a 10000TOPS/W matrix-vector multiplier for neural network inference based on Analog in-Memory Computing (AiMC), an energy efficiency at least 10x beyond ultimate digital implementations. The presented analysis connects circuit design with technology options and requirements. A compute array using pulse-width encoded activations and precharge-discharge summation line is used as circuit blueprint, key device requirements for this compute array are derived and 3 suited device options are discussed: SOT-MRAM, IGZO-based 2T1C DRAM gain cell, and projection PCM with separate write path.
机译:本文提出了一个基于模拟内存计算(AiMC)的10000TOPS / W矩阵向量乘法器的蓝图,用于神经网络推理,其能效比最终数字实现至少高出10倍。提出的分析将电路设计与技术选择和要求联系起来。使用脉宽编码激活和预充放电总和线的计算阵列用作电路蓝图,得出该计算阵列的关键器件要求,并讨论了3种合适的器件选项:SOT-MRAM,基于IGZO的2T1C DRAM增益单元,和具有单独写入路径的投影PCM。

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